MEAPMLJun 29, 2021

Two-Stage TMLE to Reduce Bias and Improve Efficiency in Cluster Randomized Trials

arXiv:2106.15737v248 citations
AI Analysis

This addresses methodological gaps for researchers conducting cluster randomized trials, offering a more robust and efficient estimator, though it is incremental as it builds on existing TMLE methods.

The paper tackled bias from missing outcomes and efficiency losses from baseline imbalances in cluster randomized trials by proposing a two-stage TMLE, which nearly eliminated bias in simulations and improved efficiency in a real trial application.

Cluster randomized trials (CRTs) randomly assign an intervention to groups of individuals (e.g., clinics or communities) and measure outcomes on individuals in those groups. While offering many advantages, this experimental design introduces challenges that are only partially addressed by existing analytic approaches. First, outcomes are often missing for some individuals within clusters. Failing to appropriately adjust for differential outcome measurement can result in biased estimates and inference. Second, CRTs often randomize limited numbers of clusters, resulting in chance imbalances on baseline outcome predictors between arms. Failing to adaptively adjust for these imbalances and other predictive covariates can result in efficiency losses. To address these methodological gaps, we propose and evaluate a novel two-stage targeted minimum loss-based estimator (TMLE) to adjust for baseline covariates in a manner that optimizes precision, after controlling for baseline and post-baseline causes of missing outcomes. Finite sample simulations illustrate that our approach can nearly eliminate bias due to differential outcome measurement, while existing CRT estimators yield misleading results and inferences. Application to real data from the SEARCH community randomized trial demonstrates the gains in efficiency afforded through adaptive adjustment for baseline covariates, after controlling for missingness on individual-level outcomes.

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